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An optimal approach for low-power migraine prediction models in the state-of-the-art wireless monitoring devices

Published: 27 March 2017 Publication History

Abstract

Wearable monitoring devices for ubiquitous health care are becoming a reality that has to deal with limited battery autonomy. Several researchers focus their efforts in reducing the energy consumption of these motes: from efficient micro-architectures, to on-node data processing techniques. In this paper we focus in the optimization of the energy consumption of monitoring devices for the prediction of symptomatic events in chronic diseases in real time. To do this, we have developed an optimization methodology that incorporates information of several sources of energy consumption: the running code for prediction, and the sensors for data acquisition. As a result of our methodology, we are able to improve the energy consumption of the computing process up to 90% with a minimal impact on accuracy. The proposed optimization methodology can be applied to any prediction modeling scheme to introduce the concept of energy efficiency. In this work we test the framework using Grammatical Evolutionary algorithms in the prediction of chronic migraines.

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cover image Guide Proceedings
DATE '17: Proceedings of the Conference on Design, Automation & Test in Europe
March 2017
1814 pages

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European Design and Automation Association

Leuven, Belgium

Publication History

Published: 27 March 2017

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